To develop public health intervention models using microsimulations, extensive personal information about inhabitants is needed, such as socio-demographic, economic and health figures. Data confidentiality is an essential characteristic of such data, while the data should support realistic scenarios. Collection of such data is possible only in secured environments and not directly available for external micro-simulation models. The aim of this paper is to illustrate a method for construction of synthetic data by predicting individual features through models based on confidential data on health and socio-economic determinants of the entire Dutch population.
翻译:为了利用微观模拟开发公共卫生干预模型,需要关于居民的广泛个人信息,如社会人口、经济和健康数据,数据保密是这些数据的基本特征,而数据保密应支持现实的假设情况,这些数据的收集只能在安全的环境中进行,不能直接用于外部微观模拟模型,本文件的目的是说明一种合成数据构建方法,通过基于整个荷兰人口健康和社会经济决定因素的保密数据模型预测个人特征。